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In statistics, hierarchical generalized linear models extend generalized linear models by relaxing the assumption that error components are independent. This allows models to be built in situations where more than one error term is necessary and also allows for dependencies between error terms. The error components can be correlated and not necessarily follow a normal distribution. When there are different clusters, that is, groups of observations, the observations in the same cluster are correlated. In fact, they are positively correlated because observations in the same cluster share some common features. In this situation, using generalized linear models and ignoring the correlations may cause problems.

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  • In statistics, hierarchical generalized linear models extend generalized linear models by relaxing the assumption that error components are independent. This allows models to be built in situations where more than one error term is necessary and also allows for dependencies between error terms. The error components can be correlated and not necessarily follow a normal distribution. When there are different clusters, that is, groups of observations, the observations in the same cluster are correlated. In fact, they are positively correlated because observations in the same cluster share some common features. In this situation, using generalized linear models and ignoring the correlations may cause problems. (en)
  • 在统计学中,分层广义线性模型(hierarchical generalized linear models (HGLM))可视为广义线性模型的推广。在广义线性模型中,误差分量是统计独立的, 然而这一假设并非总是成立的。即在有些情况下,误差项之间有函数关系。分层广义线性模型允许有不同的误差分量,误差分量可以统计相關的,并不必要满足正态分布。当有不同的聚类存在时,同一聚类中的观测值是相关的,并且是正相关的。在这种情况下,广义线性模型是不适用的,忽略这些关联会引起造成一些问题 。 (zh)
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  • In statistics, hierarchical generalized linear models extend generalized linear models by relaxing the assumption that error components are independent. This allows models to be built in situations where more than one error term is necessary and also allows for dependencies between error terms. The error components can be correlated and not necessarily follow a normal distribution. When there are different clusters, that is, groups of observations, the observations in the same cluster are correlated. In fact, they are positively correlated because observations in the same cluster share some common features. In this situation, using generalized linear models and ignoring the correlations may cause problems. (en)
  • 在统计学中,分层广义线性模型(hierarchical generalized linear models (HGLM))可视为广义线性模型的推广。在广义线性模型中,误差分量是统计独立的, 然而这一假设并非总是成立的。即在有些情况下,误差项之间有函数关系。分层广义线性模型允许有不同的误差分量,误差分量可以统计相關的,并不必要满足正态分布。当有不同的聚类存在时,同一聚类中的观测值是相关的,并且是正相关的。在这种情况下,广义线性模型是不适用的,忽略这些关联会引起造成一些问题 。 (zh)
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  • Hierarchical generalized linear model (en)
  • 分层广义线性模型 (zh)
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